چکیده
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In recent years, notable number of research studies have been conducted on the analysis
of diffusion process in complex networks. One fundamental problem in this domain
is to find the most influential spreader nodes. For achieving a successful spreading
process, nodes having high spreading ability should be selected as spreaders. Many
centrality measures have been proposed for determining and ranking the significance
of nodes and detecting the best spreaders. The majority of proposed centrality measures
require network global information which leads to high time complexity. Moreover,
with the advent of large-scale complex networks, there is a critical need for improving
accurate measures through using nodes’ local information. On the other hand, most
of the formerly proposed centrality measures have attempted to select core nodes
as spreaders but global bridge nodes have the highest spreading ability since they are
located among several giant communities of the network. In this study, a new local and
parameter-free centrality measure is proposed which is aimed at finding global bridge
nodes in the network. Hence, two new local metrics, namely edge ratio and neighborhood
diversity, are firstly defined which are used in the proposed method. Considering
edge ratio of neighbors ensures that the selected node be not in the periphery location
of the network. Furthermore, a node with high neighborhood diversity is likely
a connector between some modules (dense parts) of the network. Therefore, a node
with a high edge ratio and more diverse neighborhood has high spreading ability. The
major merits of the proposed measure are near-linear time complexity, using local
information and being parameter-free. For evaluating the proposed method, we conducted
experiments on real-world networks. The results of comparing the proposed
centrality measure with other measures in terms of epidemic models (SIR and SI),
Kendall’s tau correlation coefficient and Rank-Frequency measures indica
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